Petrović Ivan, Broggi Serena, Killer-Oberpfalzer Monika, Pfaff Johannes A R, Griessenauer Christoph J, Milosavljević Isidora, Balenović Ana, Mutzenbach Johannes S, Pikija Slaven
Faculty of Medicine, University of Novi Sad, 21000 Novi Sad, Serbia.
Neurology and Stroke Unit, ASST dei Sette Laghi, 21100 Varese, Italy.
Diagnostics (Basel). 2024 Jul 16;14(14):1531. doi: 10.3390/diagnostics14141531.
Despite the increased use of mechanical thrombectomy (MT) in recent years, there remains a lack of research on in-hospital mortality rates following the procedure, the primary factors influencing these rates, and the potential for predicting them. This study aimed to utilize interpretable machine learning (ML) to help clarify these uncertainties.
This retrospective study involved patients with anterior circulation large vessel occlusion (LVO)-related ischemic stroke who underwent MT. The patient division was made into two groups: (I) the in-hospital death group, referred to as miserable outcome, and (II) the in-hospital survival group, or favorable outcome. Python 3.10.9 was utilized to develop the machine learning models, which consisted of two types based on input features: (I) the Pre-MT model, incorporating baseline features, and (II) the Post-MT model, which included both baseline and MT-related features. After a feature selection process, the models were trained, internally evaluated, and tested, after which interpretation frameworks were employed to clarify the decision-making processes.
This study included 602 patients with a median age of 76 years (interquartile range (IQR) 65-83), out of which 54% ( = 328) were female, and 22% ( = 133) had miserable outcomes. Selected baseline features were age, baseline National Institutes of Health Stroke Scale (NIHSS) value, neutrophil-to-lymphocyte ratio (NLR), international normalized ratio (INR), the type of the affected vessel ('Vessel type'), peripheral arterial disease (PAD), baseline glycemia, and premorbid modified Rankin scale (pre-mRS). The highest odds ratio of 4.504 was observed with the presence of peripheral arterial disease (95% confidence interval (CI), 2.120-9.569). The Pre-MT model achieved an area under the curve (AUC) value of around 79% utilizing these features, and the interpretable framework discovered the baseline NIHSS value as the most influential factor. In the second data set, selected features were the same, excluding pre-mRS and including puncture-to-procedure-end time (PET) and onset-to-puncture time (OPT). The AUC value of the Post-MT model was around 84% with age being the highest-ranked feature.
This study demonstrates the moderate to strong effectiveness of interpretable machine learning models in predicting in-hospital mortality following mechanical thrombectomy for ischemic stroke, with AUCs of 0.792 for the Pre-MT model and 0.837 for the Post-MT model. Key predictors included patient age, baseline NIHSS, NLR, INR, occluded vessel type, PAD, baseline glycemia, pre-mRS, PET, and OPT. These findings provide valuable insights into risk factors and could improve post-procedural patient management.
尽管近年来机械取栓术(MT)的应用有所增加,但对于该手术后的院内死亡率、影响这些死亡率的主要因素以及预测死亡率的可能性仍缺乏研究。本研究旨在利用可解释机器学习(ML)来帮助阐明这些不确定性。
这项回顾性研究纳入了因前循环大血管闭塞(LVO)相关缺血性卒中接受MT的患者。患者被分为两组:(I)院内死亡组,即不良结局组;(II)院内生存组,即良好结局组。使用Python 3.10.9开发机器学习模型,该模型基于输入特征分为两种类型:(I)MT前模型,纳入基线特征;(II)MT后模型,包括基线特征和与MT相关的特征。经过特征选择过程后,对模型进行训练、内部评估和测试,然后采用解释框架来阐明决策过程。
本研究纳入了602例患者,中位年龄为76岁(四分位间距(IQR)65 - 83),其中54%(n = 328)为女性,22%(n = 133)有不良结局。选定的基线特征包括年龄、基线美国国立卫生研究院卒中量表(NIHSS)值、中性粒细胞与淋巴细胞比值(NLR)、国际标准化比值(INR)、受累血管类型(“血管类型”)、外周动脉疾病(PAD)、基线血糖和病前改良Rankin量表(pre - mRS)。外周动脉疾病患者的最高优势比为4.504(95%置信区间(CI),2.120 - 9.569)。MT前模型利用这些特征的曲线下面积(AUC)值约为79%,可解释框架发现基线NIHSS值是最有影响的因素。在第二个数据集中,选定的特征相同,排除了pre - mRS并纳入了穿刺至手术结束时间(PET)和发病至穿刺时间(OPT)。MT后模型的AUC值约为84%,年龄是排名最高的特征。
本研究表明,可解释机器学习模型在预测缺血性卒中机械取栓术后的院内死亡率方面具有中度至高度有效性,MT前模型的AUC为0.792,MT后模型的AUC为0.837。关键预测因素包括患者年龄、基线NIHSS、NLR、INR、闭塞血管类型、PAD、基线血糖、pre - mRS、PET和OPT。这些发现为危险因素提供了有价值的见解,并可改善术后患者管理。